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Anna Korba - ERC

Hi! PARIS Affiliate Anna Korba awarded an ERC Starting Grant for her work on efficient infinite-dimensional optimization over probability measures

We are proud to announce that Anna Korba, Assistant Professor in Statistics at CREST-GENES, Professor at ENSAE Paris, and Hi! PARIS Affiliate, has been awarded a European Research Council (ERC) Starting Grant for her project OptInfiniteEfficient infinite-dimensional optimization over measures. This highly competitive grant will support her cutting-edge research at the crossroads of statistics, machine learning, and artificial intelligence.

About Anna Korba

Anna Korba is a statistician and researcher specializing in machine learning and optimization. After earning her PhD in applied mathematics from Telecom ParisTech, she pursued postdoctoral research at Inria and ENSAE Paris before joining CREST-GENES as an Assistant Professor. Her research focuses on statistical learning theory, optimal transport, sampling algorithms, and generative modeling. She is also a Hi! PARIS Affiliate, contributing to the center’s mission of advancing AI for science, business, and society.

OptInfinite – Efficient infinite-dimensional optimization over measures

Optimization over probability measures has become a cornerstone of modern machine learning and artificial intelligence. Traditional optimization techniques work with fixed datasets or parameters, but Anna Korba’s project goes further: it develops tools that operate directly on entire probability distributions, including very large or even infinite-dimensional spaces.

This framework has powerful implications for sampling tasks, generating representative examples from a distribution or model, which are critical in fields such as:

  • Bayesian machine learning, where sampling helps quantify uncertainty in model predictions

  • Generative modeling, where it enables creating realistic new data, such as images or complex biological structures

However, existing sampling and optimization techniques often face significant limitations: they can be computationally expensive, difficult to evaluate, and poorly suited to high-dimensional or complex data. Moreover, current models are mainly designed for vectorial data and struggle with more sophisticated infinite-dimensional structures.

OptInfinite aims to overcome these challenges by creating a unified theoretical and practical framework. Leveraging tools from optimal transport and information geometry, the project will:

  • develop more efficient and adaptable sampling algorithms

  • design robust evaluation methods to assess the quality of generated samples

  • deliver an open-source software toolkit to make these techniques widely accessible

The methods developed through OptInfinite will be tested on real-world applications, including large-scale AI models, Bayesian inference, biological systems modeling, and beyond.

A European commitment to frontier research

The ERC Starting Grant is one of the most prestigious European funding schemes, awarded to early-career researchers with outstanding potential and innovative projects. The grant awarded to Anna Korba underscores the scientific excellence of CREST-GENES, ENSAE Paris, and Hi! PARIS, and highlights Europe’s commitment to supporting frontier research in artificial intelligence and statistics.

With OptInfinite, Anna Korba and her team aim to push the boundaries of what is possible in modern machine learning, paving the way for new advances in AI, probability theory, and data science.

Discover more in Anna Korba’s session at the Hi! PARIS Summer School 2025!
She explores the surprising comeback of Langevin diffusions, an old concept from physics now central to modern generative models. Anna also shares why MCMC methods are worth revisiting and what we still don’t fully understand about how diffusion models actually learn.